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Genomic selection accuracies within and between environments and small breeding groups in white spruce

机译:白云杉中环境和小型繁殖群体之间和之间的基因组选择准确性

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Genomic selection (GS) may improve selection response over conventional pedigree-based selection if markers capture more detailed information than pedigrees in recently domesticated tree species and/or make it more cost effective. Genomic prediction accuracies using 1748 trees and 6932 SNPs representative of as many distinct gene loci were determined for growth and wood traits in white spruce, within and between environments and breeding groups (BG), each with an effective size of N e ≈?20. Marker subsets were also tested. Model fits and/or cross-validation (CV) prediction accuracies for ridge regression (RR) and the least absolute shrinkage and selection operator models approached those of pedigree-based models. With strong relatedness between CV sets, prediction accuracies for RR within environment and BG were high for wood (r?=?0.71–0.79) and moderately high for growth (r?=?0.52–0.69) traits, in line with trends in heritabilities. For both classes of traits, these accuracies achieved between 83% and 92% of those obtained with phenotypes and pedigree information. Prediction into untested environments remained moderately high for wood (r?≥?0.61) but dropped significantly for growth (r?≥?0.24) traits, emphasizing the need to phenotype in all test environments and model genotype-by-environment interactions for growth traits. Removing relatedness between CV sets sharply decreased prediction accuracies for all traits and subpopulations, falling near zero between BGs with no known shared ancestry. For marker subsets, similar patterns were observed but with lower prediction accuracies. Given the need for high relatedness between CV sets to obtain good prediction accuracies, we recommend to build GS models for prediction within the same breeding population only. Breeding groups could be merged to build genomic prediction models as long as the total effective population size does not exceed 50 individuals in order to obtain high prediction accuracy such as that obtained in the present study. A number of markers limited to a few hundred would not negatively impact prediction accuracies, but these could decrease more rapidly over generations. The most promising short-term approach for genomic selection would likely be the selection of superior individuals within large full-sib families vegetatively propagated to implement multiclonal forestry.
机译:如果标记比最近驯化的树种中的谱系捕获更多的详细信息和/或使其更具成本效益,则基因组选择(GS)可能会比传统的基于谱系的选择提高选择响应。使用环境和育种组(BG)内和之间的白云杉的生长和木材性状,使用代表了许多不同基因位点的1748棵树和6932个SNP确定基因组预测精度,每组的有效大小为N e≈20。还测试了标记子集。岭回归(RR)的模型拟合和/或交叉验证(CV)预测精度,以及最小绝对收缩和选择算子模型接近基于谱系的模型。由于CV集之间具有很强的相关性,因此环境和BG内RR的预测准确度对于木材性状较高(r?=?0.71-0.79),对于生长性状的适度较高(r?=?0.52-0.69),与遗传性趋势一致。对于这两种类型的性状,这些准确性达到了通过表型和谱系信息获得的准确性的83%至92%。对于未经测试的环境,木材的预测仍保持较高水平(r≥0.61),但对于生长性状(r≥0.24)则显着下降,强调需要在所有测试环境中进行表型分析,并为生长性状建立基因型-环境交互作用模型。消除简历之间的相关性会大大降低所有性状和亚群的预测准确度,而在没有共同祖先的BG之间降到接近零。对于标记子集,观察到相似的模式,但预测准确性较低。鉴于CV集之间需要高度相关性以获得良好的预测准确性,我们建议仅在同一育种种群内建立GS模型进行预测。只要总有效种群数量不超过50个个体,就可以合并育种组以建立基因组预测模型,以便获得本研究中获得的高预测精度。仅限于几百个标记的标记不会对预测准确性产生负面影响,但是随着时间的推移,这些标记的下降速度可能会更快。基因组选择最有希望的短期方法可能是在以营养繁殖方式实施多克隆林业的大型全同胞家庭中选择优良个体。

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